Announcements Mailing list: –you should have received messages Project 1 out today (due in two weeks)

Slides:



Advertisements
Similar presentations
Lecture 2: Convolution and edge detection CS4670: Computer Vision Noah Snavely From Sandlot ScienceSandlot Science.
Advertisements

Hough Transform Reading Watt, An edge is not a line... How can we detect lines ?
Edge Detection CSE P 576 Larry Zitnick
Edge detection Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded.
Lecture 4 Edge Detection
Canny Edge Detector.
Edge detection. Edge Detection in Images Finding the contour of objects in a scene.
Edges and Scale Today’s reading Cipolla & Gee on edge detection (available online)Cipolla & Gee on edge detection Szeliski – From Sandlot ScienceSandlot.
Lecture 2: Edge detection and resampling
CS223b, Jana Kosecka Image Features Local, meaningful, detectable parts of the image. Line detection Corner detection Motivation Information content high.
Edge Detection Today’s reading Forsyth, chapters 8, 15.1
Lecture 3: Edge detection, continued
1 Image filtering
Lecture 2: Image filtering
Edge Detection Today’s readings Cipolla and Gee –supplemental: Forsyth, chapter 9Forsyth Watt, From Sandlot ScienceSandlot Science.
Edge Detection.
Edge detection Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded.
Computer Vision Spring ,-685 Instructor: S. Narasimhan WH 5409 T-R 10:30 – 11:50am.
CS559: Computer Graphics Lecture 3: Digital Image Representation Li Zhang Spring 2008.
Discrete Images (Chapter 7) Fourier Transform on discrete and bounded domains. Given an image: 1.Zero boundary condition 2.Periodic boundary condition.
Lecture 2: Edge detection CS4670: Computer Vision Noah Snavely From Sandlot ScienceSandlot Science.
Edge Detection Edge detection Convert a 2D image into a set of curves Extracts salient features of the scene More compact than pixels.
Image Processing Edge detection Filtering: Noise suppresion.
Lecture 3: Edge detection CS4670/5670: Computer Vision Kavita Bala From Sandlot ScienceSandlot Science.
Edges. Edge detection schemes can be grouped in three classes: –Gradient operators: Robert, Sobel, Prewitt, and Laplacian (3x3 and 5x5 masks) –Surface.
Introduction to Image Processing
Edge Detection Today’s reading Cipolla & Gee on edge detection (available online)Cipolla & Gee on edge detection From Sandlot ScienceSandlot Science.
Edge Detection Today’s reading Cipolla & Gee on edge detection (available online)Cipolla & Gee on edge detection Szeliski, Ch 4.1.2, From Sandlot.
SHINTA P. Juli What are edges in an image? Edge Detection Edge Detection Methods Edge Operators Matlab Program.
Instructor: S. Narasimhan
CS654: Digital Image Analysis Lecture 24: Introduction to Image Segmentation: Edge Detection Slide credits: Derek Hoiem, Lana Lazebnik, Steve Seitz, David.
Edge detection Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded.
CSE 185 Introduction to Computer Vision Edges. Scale space Reading: Chapter 3 of S.
EE 4780 Edge Detection.
Many slides from Steve Seitz and Larry Zitnick
Edge Detection and Geometric Primitive Extraction Jinxiang Chai.
Brent M. Dingle, Ph.D Game Design and Development Program Mathematics, Statistics and Computer Science University of Wisconsin - Stout Edge Detection.
Mestrado em Ciência de Computadores Mestrado Integrado em Engenharia de Redes e Sistemas Informáticos VC 15/16 – TP7 Spatial Filters Miguel Tavares Coimbra.
CSE 6367 Computer Vision Image Operations and Filtering “You cannot teach a man anything, you can only help him find it within himself.” ― Galileo GalileiGalileo.
Announcements Project 0 due tomorrow night. Edge Detection Today’s readings Cipolla and Gee (handout) –supplemental: Forsyth, chapter 9Forsyth For Friday.
COMPUTER VISION D10K-7C02 CV05: Edge Detection Dr. Setiawan Hadi, M.Sc.CS. Program Studi S-1 Teknik Informatika FMIPA Universitas Padjadjaran.
Lecture 8: Edges and Feature Detection
Last Lecture photomatix.com. Today Image Processing: from basic concepts to latest techniques Filtering Edge detection Re-sampling and aliasing Image.
Finding Boundaries Computer Vision CS 143, Brown James Hays 09/28/11 Many slides from Lana Lazebnik, Steve Seitz, David Forsyth, David Lowe, Fei-Fei Li,
CS440 / ECE 448 – Fall 2006 Lecture #2 CS 440 / ECE 448 Introduction to Artificial Intelligence Fall 2006 Instructor: Eyal Amir TAs: Deepak Ramachandran.
Edges Edges = jumps in brightness/color Brightness jumps marked in white.
Winter in Kraków photographed by Marcin Ryczek
Miguel Tavares Coimbra
Edge Detection slides taken and adapted from public websites:
Fitting: Voting and the Hough Transform
Edge Detection CS 678 Spring 2018.
Edge Detection EE/CSE 576 Linda Shapiro.
Lecture 2: Edge detection
Jeremy Bolton, PhD Assistant Teaching Professor
Edge detection Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded.
Review: Linear Systems
Dr. Chang Shu COMP 4900C Winter 2008
Edge Detection Today’s reading
Edge Detection CSE 455 Linda Shapiro.
Edge Detection Today’s reading
Lecture 2: Edge detection
Hough Transform.
Edge Detection Today’s reading
Edge Detection Today’s readings Cipolla and Gee Watt,
Lecture 2: Edge detection
Winter in Kraków photographed by Marcin Ryczek
IT472 Digital Image Processing
IT472 Digital Image Processing
Edge detection Goal: Identify sudden changes (discontinuities) in an image Intuitively, most semantic and shape information from the image can be encoded.
Edge Detection ECE P 596 Linda Shapiro.
Presentation transcript:

Announcements Mailing list: –you should have received messages Project 1 out today (due in two weeks) –help session today Carpools

Edge Detection Today’s reading Forsyth, chapters 8, 15.1 From Sandlot ScienceSandlot Science

Edge detection Convert a 2D image into a set of curves Extracts salient features of the scene More compact than pixels

Origin of Edges Edges are caused by a variety of factors depth discontinuity surface color discontinuity illumination discontinuity surface normal discontinuity

Edge detection How can you tell that a pixel is on an edge? snoop demo

Image gradient The gradient of an image: The gradient points in the direction of most rapid change in intensity The gradient direction is given by: how does this relate to the direction of the edge? The edge strength is given by the gradient magnitude

The discrete gradient How can we differentiate a digital image F[x,y]?

The discrete gradient How can we differentiate a digital image F[x,y]? Option 1: reconstruct a continuous image, then take gradient Option 2: take discrete derivative (finite difference) How would you implement this as a cross-correlation? filter demo

The Sobel operator Better approximations of the derivatives exist The Sobel operators below are very commonly used The standard defn. of the Sobel operator omits the 1/8 term –doesn’t make a difference for edge detection –the 1/8 term is needed to get the right gradient value, however

Effects of noise Consider a single row or column of the image Plotting intensity as a function of position gives a signal Where is the edge?

Solution: smooth first Look for peaks in

Derivative theorem of convolution This saves us one operation:

Laplacian of Gaussian Consider Laplacian of Gaussian operator Where is the edge?Zero-crossings of bottom graph

2D edge detection filters is the Laplacian operator: Laplacian of Gaussian Gaussianderivative of Gaussian filter demo

The Canny edge detector original image (Lena)

The Canny edge detector norm of the gradient

The Canny edge detector thresholding

Non-maximum suppression Check if pixel is local maximum along gradient direction requires checking interpolated pixels p and r

The Canny edge detector thinning (non-maximum suppression)

Effect of  (Gaussian kernel spread/size) Canny with original The choice of depends on desired behavior large detects large scale edges small detects fine features

Edge detection by subtraction original

Edge detection by subtraction smoothed (5x5 Gaussian)

Edge detection by subtraction smoothed – original (scaled by 4, offset +128) Why does this work? filter demo

Gaussian - image filter Laplacian of Gaussian Gaussian delta function

An edge is not a line... How can we detect lines ?

Finding lines in an image Option 1: Search for the line at every possible position/orientation What is the cost of this operation? Option 2: Use a voting scheme: Hough transform

Finding lines in an image Connection between image (x,y) and Hough (m,b) spaces A line in the image corresponds to a point in Hough space To go from image space to Hough space: –given a set of points (x,y), find all (m,b) such that y = mx + b x y m b m0m0 b0b0 image spaceHough space

Finding lines in an image Connection between image (x,y) and Hough (m,b) spaces A line in the image corresponds to a point in Hough space To go from image space to Hough space: –given a set of points (x,y), find all (m,b) such that y = mx + b What does a point (x 0, y 0 ) in the image space map to? x y m b image spaceHough space –A: the solutions of b = -x 0 m + y 0 –this is a line in Hough space x0x0 y0y0

Hough transform algorithm Typically use a different parameterization d is the perpendicular distance from the line to the origin  is the angle this perpendicular makes with the x axis Why?

Hough transform algorithm Typically use a different parameterization d is the perpendicular distance from the line to the origin  is the angle this perpendicular makes with the x axis Why? Basic Hough transform algorithm 1.Initialize H[d,  ]=0 2.for each edge point I[x,y] in the image for  = 0 to 180 H[d,  ] += 1 3.Find the value(s) of (d,  ) where H[d,  ] is maximum 4.The detected line in the image is given by What’s the running time (measured in # votes)? Hough line demo

Extensions Extension 1: Use the image gradient 1.same 2.for each edge point I[x,y] in the image compute unique (d,  ) based on image gradient at (x,y) H[d,  ] += 1 3.same 4.same What’s the running time measured in votes? Extension 2 give more votes for stronger edges Extension 3 change the sampling of (d,  ) to give more/less resolution Extension 4 The same procedure can be used with circles, squares, or any other shape

Extensions Extension 1: Use the image gradient 1.same 2.for each edge point I[x,y] in the image compute unique (d,  ) based on image gradient at (x,y) H[d,  ] += 1 3.same 4.same What’s the running time measured in votes? Extension 2 give more votes for stronger edges Extension 3 change the sampling of (d,  ) to give more/less resolution Extension 4 The same procedure can be used with circles, squares, or any other shape Hough circle demo